To date, the majority of recommender systems (RSs) work on a single domain, such as exclusively for movies, books, etc. However,
human preferences may span across multiple domains. Hence, consumption behaviors on related items from different domains can
be useful to inform RS to make recommendations. This paper reports our efforts on uncovering the association between user
preferences on related items across domains. In addition, we have also tested collaborative filtering technique on our cross-domain
dataset for which results are reported here.
Keywords Recommendation - Collaborative Filtering - Cross Domain